Near-Optimal Joint Object Matching via Convex Relaxation
Yuxin Chen, Leonidas J. Guibas, Qi-Xing Huang

TL;DR
This paper introduces MatchLift, a convex relaxation algorithm for joint object matching that is robust to high levels of corruption and partial similarities, with theoretical guarantees and practical effectiveness.
Contribution
It develops a convex program for joint object matching that handles partial similarities and dense corruptions, with near-optimal error correction and minimal input requirements.
Findings
Works even with a dominant fraction of corrupted maps.
Guarantees perfect matching with a connected map graph.
Validated on synthetic and real-world datasets.
Abstract
Joint matching over a collection of objects aims at aggregating information from a large collection of similar instances (e.g. images, graphs, shapes) to improve maps between pairs of them. Given multiple matches computed between a few object pairs in isolation, the goal is to recover an entire collection of maps that are (1) globally consistent, and (2) close to the provided maps --- and under certain conditions provably the ground-truth maps. Despite recent advances on this problem, the best-known recovery guarantees are limited to a small constant barrier --- none of the existing methods find theoretical support when more than of input correspondences are corrupted. Moreover, prior approaches focus mostly on fully similar objects, while it is practically more demanding to match instances that are only partially similar to each other. In this paper, we develop an algorithm to…
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Taxonomy
TopicsGraph Theory and Algorithms · Advanced Image and Video Retrieval Techniques · Robotics and Sensor-Based Localization
